The problem of identification of multi-component and (or) spatially varying earthquake support motions based on measured responses in instrumented structures is considered. The governing equations of motion are cast in the state space form and a time domain solution to the input identification problem is developed based on the Kalman and particle filtering methods. The method allows for noise in measured responses, imperfections in mathematical model for the structure, and possible nonlinear behavior of the structure. The unknown support motions are treated as hypothetical additional system states and a prior model for these motions are taken to be given in terms of white noise processes. For linear systems, the solution is developed within...
Development of dynamic state estimation techniques and their applications in problems of identificat...
When Markov chain Monte Carlo (MCMC) samplers are used in problems of system parameter identificatio...
The focus of this paper is real-time Bayesian state estimation using nonlinear models. A recently d...
The problem of identification of multi-component and (or) spatially varying earthquake support motio...
The thesis outlines the development and application of a few novel dynamic state estimation based me...
The problem of identifying parameters of nonlinear vibrating systems using spatially incomplete, no...
Many problems of state estimation in structural dynamics permit a partitioning of system states into...
The problem of combined state and parameter estimation in nonlinear state space models, based on Bay...
International audienceStandard filtering techniques for structural parameter estimation assume that ...
International audienceStandard filtering techniques for structural parameter estimation assume that ...
The focus of this report is real-time Bayesian state estimation using nonlinear models. A recently d...
The focus of this paper is to demonstrate the application of a recently developed Bayesian state es...
The problem of identification of stiffness, mass and damping properties of linear structural systems...
The problem of identification of parameters of nonlinear structures using dynamic state estimation t...
This thesis is concerned with the parameter identification of structure-damper systems. Hence, it ad...
Development of dynamic state estimation techniques and their applications in problems of identificat...
When Markov chain Monte Carlo (MCMC) samplers are used in problems of system parameter identificatio...
The focus of this paper is real-time Bayesian state estimation using nonlinear models. A recently d...
The problem of identification of multi-component and (or) spatially varying earthquake support motio...
The thesis outlines the development and application of a few novel dynamic state estimation based me...
The problem of identifying parameters of nonlinear vibrating systems using spatially incomplete, no...
Many problems of state estimation in structural dynamics permit a partitioning of system states into...
The problem of combined state and parameter estimation in nonlinear state space models, based on Bay...
International audienceStandard filtering techniques for structural parameter estimation assume that ...
International audienceStandard filtering techniques for structural parameter estimation assume that ...
The focus of this report is real-time Bayesian state estimation using nonlinear models. A recently d...
The focus of this paper is to demonstrate the application of a recently developed Bayesian state es...
The problem of identification of stiffness, mass and damping properties of linear structural systems...
The problem of identification of parameters of nonlinear structures using dynamic state estimation t...
This thesis is concerned with the parameter identification of structure-damper systems. Hence, it ad...
Development of dynamic state estimation techniques and their applications in problems of identificat...
When Markov chain Monte Carlo (MCMC) samplers are used in problems of system parameter identificatio...
The focus of this paper is real-time Bayesian state estimation using nonlinear models. A recently d...